AMM对末端分子诱导的进一步结果

M. Graña, J. Gallego, C. Hernández
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引用次数: 10

摘要

我们的主要兴趣是对高光谱图像进行无监督分割。我们的方法是将光谱分解产生的丰度图像解释为图像中区域的表征。我们从图像数据中推导出光谱解混所需的端元。因此,端元光谱不容易解释为实验室光谱。我们的端元诱导方法将形态独立性或端元作为必要条件。我们使用自联想形态记忆作为形态独立条件的检测器。我们的算法只需要对图像进行一次处理。本文给出了一组合成图像的实验结果,并与ICA和CCA方法进行了对比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Further results on AMM for endmember induction
Our main interest is to perform unsupervised segmentation of the hyperspectral images. Our approach is to interpret abundance images resulting from spectral unmixing as the characterization of regions in the image. We induce the endmembers needed for spectral unmixing from the image data. Therefore the endmember spectra are not easily interpretable as laboratory spectra. Our method for endmember induction looks at the morphological independence or the endmembers as a necessary condition. We use the Autoassociative Morphological Memories (AMM) as detectors of morphological independence conditions. Our algorithm needs only one pass of the image. The experimental results obtained over a set of synthetic images are presented here, contrasted with the ICA and CCA approaches.
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